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Robust subspace clustering based on non-convex low-rank approximation and adaptive kernel

机译:基于非凸低级近似和Adaptive Kernel的强大子空间聚类

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As a relatively advanced method, the low-rank kernel space clustering method shows good performance in dealing with nonlinear structure of high-dimensional data. Unfortunately, this method is sensitive to large corruptions and doesn't balance the contribution of all singular values. To solve the above problems, the low-rank kernel method is modified, and a robust subspace clustering method (LAKRSC) based on non-convex low-rank approximation and adaptive kernel is proposed. In our model, the weighted Schatten p-norm is introduced to balance the importance of different singular values, which can more accurately approximate the rank function and be more flexible in practical applications. Therefore, applying weighted Schatten p-norm to adaptive kernel can approximate the original low rank hypothesis better when the data is mapped into the feature space. In addition, our model uses correntropy to handle complex noise which enhances the robustness of the model. A new algorithm HQ&ADMM, combined by Half-Quadratic technique (HQ) and ADMM, is studied to solve our model. Experiments on four real-world datasets show that the clustering performance of LAKRSC is significantly better than that of several more advanced methods. (C) 2019 Elsevier Inc. All rights reserved.
机译:作为相对先进的方法,低级内核空间聚类方法在处理高维数据的非线性结构方面表现出良好的性能。不幸的是,这种方法对大型腐败敏感,并且不会平衡所有奇异值的贡献。为了解决上述问题,提出了一种基于非凸低秩近似和自适应内核的较低级内核方法,以及基于非凸低秩近似和自适应内核的鲁棒子空间聚类方法(Lakrsc)。在我们的模型中,引入了加权的Schatten P-Norm以平衡不同奇异值的重要性,这可以更准确地近似秩函数并在实际应用中更灵活。因此,将加权的Schatten P-Norm应用于自适应内核,当数据被映射到特征空间时,可以更好地近似原始低秩假设。此外,我们的模型使用正轮堆来处理复杂的噪声,这提高了模型的鲁棒性。研究了一项新的算法HQ&ADMM,通过半二次技术(HQ)和ADMM组合,解决了我们的模型。四个真实数据集的实验表明,Lakrsc的聚类性能明显优于几种更先进的方法。 (c)2019 Elsevier Inc.保留所有权利。

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